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Abstract 


Objectives

Bejel, caused by Treponema pallidum subsp. endemicum (TEN), was until now considered as a non-venereal disease endemic in areas with hot and dry climates. This study has identified TEN in clinical samples from Cuban patients previously diagnosed with syphilis.

Methods

We performed sequencing-based molecular typing on 92 samples from Cuban individuals diagnosed with syphilis. Moreover, to differentiate T. pallidum subspecies, multi-locus sequence analysis (MLSA) was designed and was applied to suspicious samples.

Results

Nine samples, from six patients, had a nucleotide sequence similarity (at all typing loci) to the Bosnia A genome, which is the infectious agent of bejel. Additionally, MLSA clearly supported a TEN classification for the treponemal samples. Clinical and epidemiological data from the six patients also suggested sexual transmission of bejel as well as the endemicity of this rare treponematosis in Cuba.

Conclusions

Molecular identification of Treponema pallidum subsp. endemicum, the agent of bejel, in Cuban patients diagnosed with syphilis indicates the clear limitations of a diagnosis based exclusively on serology, geographical occurrence, clinical symptoms and anamnestic data. This finding has important implications for Global Public Health Systems, including paradigm changes regarding the location of endemic outbreaks, clinical aspects and transmission of this neglected disease.

Citations & impact 


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https://scite.ai/reports/10.1016/j.cmi.2018.02.006

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Funding 


Funders who supported this work.

Agency of the Czech Republic (1)

Ministry of Health of the Czech Republic (1)